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A multivariate non‐parametric model for synthetic generation of daily streamflow
Authors:Wensheng Wang  Jing Ding
Affiliation:School of Hydraulic Engineering of Sichuan University, Chengdu 610065, People's Republic of China
Abstract:
A p‐order multivariate kernel density model based on kernel density theory has been developed for synthetic generation of multivariate variables. It belongs to a kind of data‐driven approach and is able to avoid prior assumptions as to the form of probability distribution (normal or Pearson III) and the form of dependence (linear or non‐linear). The p‐order multivariate kernel density model is a non‐parametric method for synthesis of streamflow. The model is more flexible than conventional parametric models used in stochastic hydrology. The effectiveness and satisfactoriness of this model are illustrated through its application to the simultaneous synthetic generation of daily streamflow from Pingshan station and Yibin‐Pingshan region (Yi‐Ping region) of the Jinsha River in China. Copyright © 2007 John Wiley & Sons, Ltd.
Keywords:daily streamflow  synthetic generation  kernel density estimation  multivariate kernel density model  verification and validation
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